How can I plot overlay black land?
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At the moment I have a plot that looks like the attached, with zero values being land.
How can I make the land black in this plot? without affecting the zero values in the data..
thanks, Michael
Answers (5)
Kelly Kearney
on 11 Aug 2014
Edited: Kelly Kearney
on 11 Aug 2014
Plot using pcolor (not image or similar), mask out the land with NaNs, and set the axis color to black.
If you don't have a specific land mask already defined, you can use inpolygon with a coastline dataset. For example
lat = linspace(-90, 90, 100);
lon = linspace(-180, 180, 100);
z = peaks(100);
[long, latg] = meshgrid(lon, lat);
C = load('coast');
island = inpolygon(long, latg, C.long, C.lat);
z(island) = NaN;
pcolor(long, latg, z);
set(gca, 'color', 'k');
shading flat;
The inpolygon call will be a bit slow with a matrix your size, but you should only have to call that once and then can save the mask for later use. I use my inpolygons function instead, and it tends to be faster for tasks like this.
7 Comments
Kelly Kearney
on 12 Aug 2014
Using the method I showed above, where land values are designated as such based on coastline polygons, it shouldn't matter. I assume he means that the land values are given a default value if 0, which also happens to be a perfectly valid data values. Therefore assigning the color black to 0 is not a good solution. Calculating the real land mask (based on polygons, not data == 0) will solve the problem.
Michael, did you try the inpolygons function I linked to? It's still slow, but not as slow as inoolygon. Of course, if you already have a land mask associated with the data, of course use that.
Excuse the typos, typing on a phone and it doesn't play well with this forum at all.
Kelly Kearney
on 12 Aug 2014
Edited: Kelly Kearney
on 12 Aug 2014
Alternatively, assuming you're not planning to zoom in to full resolution with this figure, there's really no reason that your land mask has to be calculated at such a high resolution.
The following example calculates the land mask at 1/4 the resolution, then upsamples it for use as a mask. Only takes a ~30 sec on my computer.
Note that I had to add in the flatearthpoly call to close off Antarctica properly. I'm assuming you have the Mapping Toolbox, since you didn't comment on my use of the coast.mat dataset.
nlat = 1682;
nlon = 3600;
lat = linspace(-90, 90, nlat);
lon = linspace(-180, 180, nlon);
z = peaks(max(nlat,nlon));
z = z(1:nlat, 1:nlon);
[long, latg] = meshgrid(lon, lat);
C = load('coast');
[latc, lonc] = flatearthpoly(C.lat, C.long);
lat2 = linspace(-90,90,nlat/4);
lon2 = linspace(-180,180,nlon/4);
[long2, latg2] = meshgrid(lon2, lat2);
island = inpolygons(long2, latg2, lonc, latc);
island = interp2(long2, latg2, island, long, latg, 'nearest');
z(island) = NaN;
pcolor(long, latg, z);
set(gca, 'color', 'k');
shading flat;
hold on;
plot(lonc, latc, 'w');
colorbar;
Joseph Cheng
on 11 Aug 2014
You can change the colormap used to display the image. First obtain the colormap used by:
map = colormap;
then change the color map corresponding to zero to black [0 0 0]
map(1,:) = 0;
then apply the colormap:
colormap(map);
5 Comments
Joseph Cheng
on 11 Aug 2014
well you could do something like this.
%create dummy image
images = 0:.01:1;
images=repmat(images,101,1);
%create mask in the center.
mask = images==.5;
%create a foreground flat image offset it to a value not used by the image
maskImage = max(images(:))*ones(size(images))+.1;
f1 = figure;
h1= imagesc(images), colorbar;
%generate the colormap
map = colormap;
%append black to the end of the colormap
map = colormap([map;gray(1)]);
hold on;
%overlay the earth image with the foreground mask
h2 = imagesc(maskImage);
%using the logic mask set the foreground to be transparent.
set(h2,'alphaData',mask)
%edit the colorbar to only show values for the earth image.
cbar_handle = findobj(f1,'tag','Colorbar')
pause(.1)
set(cbar_handle,'Ylim',[0 1])
the only problem i have with this right now is that the last line needs to have a pause of some value for it to work in a script. so here i have created a mask for the value of .5. in your case i'd create a mask of the land values of zero where i know i'll only have zero values for land then use that for the other data sets where there are zero values in the sea.
Image Analyst
on 11 Aug 2014
If you don't like the black line in the colorbar, you can convert to rgb, like this untested code:
% Create standard colormap
customColorMap = jet(256);
% Make bottom color be black
customColorMap(1,:) = [0,0,0];
% Convert to RGB
rgbImage = ind2rgb(indexedImage, customColorMap);
% Display
imshow(rgbImage);
% Show color map, standard one, not custom one
colormap(jet(256));
colorbar;
3 Comments
Image Analyst
on 11 Aug 2014
You must have some pixels in the water that are the same intensity as the land. How do you know they are not land? Maybe they are islands? If you want to filter out small specks that you don't want to be black, then use bwareaopen.
I'm going to be traveling for the next week after tomorrow, and not online very much, so if you can upload your indexed image (not the color one that you uploaded already), and point out what areas you don't want black, then I'll see if I can get time to look at it.
corvianawatie
on 21 Aug 2014
if your data is Z(i,j), where i=1682 and j=3600 then you must have land masking data (contain of 0 and 1), e.g. if land then the value is one and if ocean then the value is zero. Then do this calculation:
for i=1:1682;
for j=1:3600;
if (land(i,j)==1);
Z(i,j) = NaN;
else;
Z(i,j) = Z(i,j);
end;
end;
end;
end;
pcolor (Z);
8 Comments
Kelly Kearney
on 22 Aug 2014
If the NaN mask is in place, I'll still argue that it's much more straightforward to just use pcolor than trying to replicate the same appearance with contortions of image and plot.
figure;
axes('color', 'k');
pcolor(data);
shading flat;
Chad Greene
on 5 Dec 2014
I turned Kelly's inpolygon solution into a function called landmask. It's worth noting that downsampling the coast line does make computation faster, but it introduces an error: Each land mass is separated by a row of NaNs in the coast line arrays. If you skip over a NaN row, land masses get conjoined. I included a workaround to that problem in the landmask function.
0 Comments
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